Achieving a consistently high yield is always a key design objective. However, circuits designed in aggressively scaled technologies face more stringent design constraints and increased process variability. Hence, design for yield (DFY) in nano-meter regime has become highly imperative for chip designers.This thesis focuses on several topics in yield enhancement and attempts to answer two basic questions (1) how to achieve a high yield and (2)how to achieve a consistently high yield. The first question is associated with several yield optimization issues. One key issue that complicates parametric yield optimization is the negative correlation among design constraints. In the first part of the thesis, we discuss the power-performance correlation and present a novel yield optimization framework by selecting body bias at design time. The second and third parts of the thesis discuss the impact of oxide breakdown reliability on yield. We propose a process and temperature variation-aware method for full chip oxide breakdown reliability analysis. Based on that, we further develop a reliability and performance management scheme by analyzing limited post-fabrication measurements. Since pre- and post-silicon optimization usually targets at the same design objective, it is therefore necessary to perform certain coordination to avoid repeated optimization. In the fourth part of the thesis, we explore the interaction between gate sizing (pre-silicon) and adaptive body biasing (post-silicon) to improve the yield optimization efficiency while maintaining the tunability for a particular target. It has been observed that even for the same design with exactly the same design optimization, the yield may happen to be inconsistent from lot to lot. A major reason behind this inconsistency is the inability to capture the process variation change during the fabrication. In the last part of the thesis, we address the second question to achieve a consistently high yield by using a dynamic variation extraction model. The proposed post-silicon model is extracted from the measurements of product wafers and then dynamically adapts itself to the process change by reusing information from past wafers to validate/improve the model.
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Yield Enhancement through Pre- and Post-Silicon Adaptation.